学习长短期记忆红外热视频的时间效应用于电阻点焊质量预测

Shenghan Guo, Dali Wang, Jian Chen, Zhili Feng, W. Guo
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引用次数: 1

摘要

随着传感技术的发展,电阻点焊(RSW)过程的现场红外热视频可以被采集到。每个视频都记录了焊核的形成过程。熔核的演变在整个框架中产生了“时间效应”,可以用于焊接质量的实时无损评估(NDE)。目前,基于成像数据的质量预测主要集中在卷积神经网络(Convolutional Neural Network, CNN)的光学特征提取上,并没有充分利用这种时间效应。在本研究中,从视频中提取焊接熔核表面关键位置对应的像素,形成多元时间序列(MTS)。多变量自适应回归样条(multi - Adaptive Regression Splines, MARS)用于MTS处理,去除与无信息帧相关的噪声信号。建立了一种堆叠长短期记忆(LSTM)模型,从加工后的MTS中学习,预测实时无损检测中的焊核尺寸和厚度。以硼钢焊接质量为例,结果表明,与基于cnn的焊缝质量预测相比,该方法在预测精度和计算时间上均有提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning the Temporal Effect in Infrared Thermal Videos With Long Short-Term Memory for Quality Prediction in Resistance Spot Welding
With the advances of sensing technology, in-situ infrared thermal videos can be collected from Resistance Spot Welding (RSW) processes. Each video records the formulation process of a weld nugget. The nugget evolution creates a “temporal effect” across the frames, which can be leveraged for real-time, nondestructive evaluation (NDE) of the weld quality. Currently, quality prediction with imaging data mainly focuses on optical feature extraction with Convolutional Neural Network (CNN) but does not make the most of such temporal effect. In this study, pixels corresponding to critical locations on the weld nugget surface are extracted from a video to form multivariate time series (MTS). Multivariate Adaptive Regression Splines (MARS) is used in MTS processing to remove noisy signals related to uninformative frames. A Stacked Long Short-Term Memory (LSTM) model is developed to learn from the processed MTS and then predicts weld nugget size and thickness in real-time NDE. Results from a case study on RSW of Boron steel demonstrates the improvement in prediction accuracy and computational time with the proposed method, as compared to CNN-based weld quality prediction.
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